Inspiralia Tecnologías Avanzadas, Estrada 10, 28034 Madrid, Spain.
Comput Biol Med. 2012 Apr;42(4):364-75. doi: 10.1016/j.compbiomed.2011.12.003. Epub 2012 Jan 4.
In this paper we address the problem of recognising the movement intentions of patients restricted to a medical bed. The developed recognition system will be used to implement a natural human-machine interface to move a medical bed by means of the slight movements of patients with reduced mobility.
Our proposal uses pressure map sequences as input and presents a novel system based on artificial neural networks to recognise the movement intentions. The system analyses each pressure map in real-time and classifies the raw information into output classes which represent these intentions. The complexity of the recognition problem is high because of the multiple body characteristics and distinct ways of communicating intentions. To address this problem, a complete processing chain was developed consisting of image processing algorithms, a knowledge extraction process, and a multilayer perceptron (MLP) classification model.
Different configurations of the MLP have been investigated and quantitatively compared. The accuracy of our approach is high, obtaining an accuracy of 87%. The model was compared with five well-known classification paradigms. The performance of a reduced model, obtained by through feature selection algorithms, was found to be better and less time-consuming than the original model. The whole proposal has been validated with real patients in pre-clinical tests using the final medical bed prototype.
The proposed approach produced very promising results, outperforming existing classification approaches. The excellent behaviour of the recognition system will enable its use in controlling the movements of the bed, in several degrees of freedom, by the patient with his/her own body.
本文旨在解决限制在医疗床上的患者的运动意图识别问题。所开发的识别系统将用于通过运动功能受限患者的轻微运动来实现自然的人机界面,从而移动医疗床。
我们的方案使用压力图序列作为输入,并提出了一种基于人工神经网络的新型系统,用于识别运动意图。该系统实时分析每个压力图,并将原始信息分类为代表这些意图的输出类别。由于存在多种身体特征和不同的意图表达方式,识别问题的复杂性很高。为了解决这个问题,我们开发了一个完整的处理链,包括图像处理算法、知识提取过程和多层感知器(MLP)分类模型。
研究了不同配置的 MLP,并进行了定量比较。我们的方法具有较高的准确性,获得了 87%的准确率。该模型与五个著名的分类范例进行了比较。通过特征选择算法获得的简化模型的性能优于原始模型,且更节省时间。整个方案已在使用最终医疗床原型的临床前测试中对真实患者进行了验证。
所提出的方法取得了非常有前景的结果,优于现有的分类方法。识别系统的出色表现将使其能够通过患者自身的身体来控制床的多个自由度的运动。